Abstract
Recently, the technology of visual object tracking has achieved great success. However, it is still extraordinary challenging for some factors, such as scale variations, partial occlusions and so on. To deal with the problem of scale variations of the target, this paper proposes a hybrid tracking algorithm based on ridge regression and multi-scale local sparse coding. The hybrid tracking algorithm contains three parts. Firstly, a discriminative model based on two ridge regression models which include a correlation filtering ridge regression model and a color statistics ridge regression model, is used to estimate the approximate position of the target. Secondly, a multi-scale local sparse coding with particle filtering model, which combines local overlapped patches and local non-overlapped patches, is used to estimate the precise position and scale variations of the target. Thirdly, the appearance model of the target in the discriminative model based on ridge regression is updated according to the precise position and scale variations of the target in the second part. At the end, extensive experiments verify the effectiveness of the hybrid tracking algorithm in dealing with scale variations of the target.
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Acknowledgments
Thank the editor and the anonymous referees for their valuable comments. This research was supported by the Science and Technology Research Project of Jiangxi Education Department (No. GJJ180904), the National Natural Science Foundation of China (No. 61762055, 61962029 and 61572214), the Jiangxi Provincial Natural Science Foundation of China (No. 20181BAB202014) and the Humanities and Social Sciences Foundation of Colleges and Universities in Jiangxi Province (No. TQ18111).
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Zhao, Z., Xiong, L., Mei, Z. et al. Robust object tracking based on ridge regression and multi-scale local sparse coding. Multimed Tools Appl 79, 785–804 (2020). https://doi.org/10.1007/s11042-019-08139-2
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DOI: https://doi.org/10.1007/s11042-019-08139-2